生成图字典学习。

Zhichen Zeng, Ruike Zhu, Yinglong Xia, Hanqing Zeng, Hanghang Tong
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引用次数: 0

摘要

字典学习是表征学习的一项基本任务,它通过一组共享原子来近似数据样本。然而,基于图的字典学习,即图字典学习(GDL),比矢量数据更具挑战性,因为图位于不同的度量空间中。关于GDL的稀疏文献从重构的角度来表述问题,通常学习线性图嵌入,计算成本高。本文提出了一种名为FraMe的融合Gromov-Wasserstein (FGW)混合模型,从生成的角度来解决GDL问题。利用基于径向基函数核和FGW距离的图生成函数,FraMe生成非线性嵌入空间,从理论上证明,该嵌入空间很好地逼近了原始图空间。在保证收敛性的期望最大化算法的基础上,提出了一种快速求解方法。大量的实验证明了所获得的节点和图嵌入的有效性,并且我们的算法比最先进的方法取得了显着的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Graph Dictionary Learning.

Dictionary learning, which approximates data samples by a set of shared atoms, is a fundamental task in representation learning. However, dictionary learning over graphs, namely graph dictionary learning (GDL), is much more challenging than vectorial data as graphs lie in disparate metric spaces. The sparse literature on GDL formulates the problem from the reconstructive view and often learns linear graph embeddings with a high computational cost. In this paper, we propose a Fused Gromov-Wasserstein (FGW) Mixture Model named FraMe to address the GDL problem from the generative view. Equipped with the graph generation function based on the radial basis function kernel and FGW distance, FraMe generates nonlinear embedding spaces, which, as we theoretically proved, provide a good approximation of the original graph spaces. A fast solution is further proposed on top of the expectation-maximization algorithm with guaranteed convergence. Extensive experiments demonstrate the effectiveness of the obtained node and graph embeddings, and our algorithm achieves significant improvements over the state-of-the-art methods.

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